Analysis of Neighbourhoods in Multi-layered Dynamic Social Networks

Piotr Brodka, Przemyslaw Kazienko, Katarzyna Musial, Krzysztof Skibicki

Research output: Contribution to journalArticlepeer-review

48 Citations (Scopus)

Abstract

Social networks existing among employees, customers or other types of users of various IT systems have become one of the research areas of growing importance. Data about people and their interactions that exist in social media, provides information about many different types of relationships within one network. Analysing this data one can obtain knowledge not only about the structure and characteristics of the network but it also enables to understand the semantic of human relations.

Each social network consists of nodes - social entities and edges linking pairs of nodes. In regular, one-layered networks, two nodes - i.e. people are connected with a single edge whereas in the multi-layered social networks, there may be many links of different types for a pair of nodes. Most of the methods used for social network analysis (SNA) may be applied only to one-layered networks. Thus, some new structural measures for multi-layered social networks are proposed in the paper. This study focuses on definitions and analysis of cross-layer clustering coefficient, cross-layer degree centrality and various versions of multi-layered degree centralities. Authors also investigated the dynamics of multi-layered neighbourhood. The evaluation of the presented concepts on the real-world dataset is presented. The measures proposed in the paper may directly be used to various methods for collective classification, in which nodes are assigned to labels according to their structural input features.

Original languageEnglish
Pages (from-to)582-596
Number of pages15
JournalInternational journal of computational intelligence systems
Volume5
Issue number3
Early online date28 May 2012
DOIs
Publication statusPublished - Jun 2012

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